In this paper, we study the problem of recovering a group sparse vector from a small number of linear measurements. In the past, the common approach has been to use various 'group sparsity-inducing' norms such as the Group LASSO norm for this purpose. By using the theory of convex relaxations, we show that it is also possible to use ℓ 1 -norm minimization for group sparse recovery. We introduce a new concept called group robust null space property (GRNSP), and show that, under suitable conditions, a group version of the restricted isometry property (GRIP) implies the GRNSP, and thus leads to group sparse recovery. When all groups are of equal size, our bounds are sometimes less conservative than known bounds. Moreover, our results apply eve...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
Compressed sensing refers to the recovery of a high-dimensional but sparse vector using a small numb...
AbstractIn compressed sensing, in order to recover a sparse or nearly sparse vector from possibly no...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements,\u...
This paper tackles a compressed sensing problem with the unknown signal showing a flexible block spa...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
Abstract. We consider the problem of recovering a block (or group) sparse signal from an underdeterm...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements, ...
Abstract. We consider the problem of recovering a block (or group) sparse signal from an underdeterm...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
We present reconstruction algorithms for smooth signals with block sparsity from their compressed me...
This paper deals with sparse phase retrieval, i.e., the problem of estimating a vector from quadrati...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
Compressed sensing refers to the recovery of a high-dimensional but sparse vector using a small numb...
AbstractIn compressed sensing, in order to recover a sparse or nearly sparse vector from possibly no...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements,\u...
This paper tackles a compressed sensing problem with the unknown signal showing a flexible block spa...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
Abstract. We consider the problem of recovering a block (or group) sparse signal from an underdeterm...
In compressed sensing, to recover a sparse signal or nearly sparse signal from noisy measurements, ...
Abstract. We consider the problem of recovering a block (or group) sparse signal from an underdeterm...
Recovery of the sparsity pattern (or support) of an unknown sparse vector from a limited number of n...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
We present reconstruction algorithms for smooth signals with block sparsity from their compressed me...
This paper deals with sparse phase retrieval, i.e., the problem of estimating a vector from quadrati...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...
We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓ ...